Authors
Muhammad Yasir Adnan, Yong Xue and Richard Self, University of Derby, United Kingdom
Abstract
In quantitative remote sensing, missing values classified as outliers occur frequently. This is due to technical constraints and the impact of weather on the efficiency of instruments to collect data. In order to deal with these missing values, we offer an Outlier-Search-and-Replace (OSR) algorithm that uses spatial and temporal information for the detection and reconstruction of missing data. The algorithm searches for outlier in the data and reconstruct by finding the best possible match in spatial locations.
Keywords
Remote Sensing, Missing Data Reconstruction, Outlier, MODIS, Land Surface Temperature.